结合网络结构和文本属性的产品推荐算法

Wen Hu, Changshun Ge
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引用次数: 0

摘要

大多数传统的推荐算法在进行产品推荐时依赖于用户之间的共同评分项。数据高度稀疏,推荐效果不佳。为此,提出了一种改进的协同过滤推荐算法。该算法基于用户购买记录,采用表示学习的方法构建用户产品网络,获得用户与产品之间的低维嵌入语义关系,并使用余弦相似度度量产品之间的语义相似度。然后,根据隐狄利克雷主题分布模型,得到产品的主题特征,并利用余弦相似度计算产品之间主题特征的相似度。采用线性融合方法,有效缓解了数据稀疏问题,提高了推荐性能。通过亚马逊产品评论数据集验证推荐算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Recommendation Algorithm Combining Network Structure and Text Attributes
Most traditional recommendation algorithms rely on common scoring items between users when making product recommendations. The data is highly sparse and the recommendation effect is not good. Therefore, an improved collaborative filtering recom-mendation algorithm is proposed. Based on user purchase rec-ords, the algorithm uses a representation learning method to construct a user product network, obtains the low-dimensional em-bedded semantic relationship between users and product no-des, and uses cosine similarity to measure the semantic similarity between products. Then, according to the hidden Dirichlet topic distribution model, the topic features of the products are obtained, and the cosine similarity is used to calculate the similarity of the topic features between the products. The linear fusion method is adopted to effectively alleviate the data sparse problem and improve the recommendation performance. Through Amazon product reviews Data set to verify the effectiveness of the recommendation algorithm.
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